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PurposeThe purpose of this study was to predict high‐risk patients who experience significant increases in hospital charges and length of stay (LOS) following specific postoperative complications.MethodsThis study analyzed over two million patients from the Nationwide Inpatient Sample database undergoing elective total knee arthroplasty (TKA) for primary osteoarthritis. Baseline demographics, clinical characteristics and incidence of postoperative complications were examined. A neural network model was utilized to predict high‐risk patients who fall into the top 25% for both LOS and total hospital charges after complications such as sepsis or surgical site infection (SSI).ResultsThe most common complications were blood loss anaemia (14.6%), acute kidney injury (1.6%) and urinary tract infection (0.9%). Patients with complications incurred significantly higher total charges (mean $66,804) and longer LOS (mean 2.9 days) compared to those without complications (mean $58,545 and 2.1 days, respectively). The neural network model demonstrated strong predictive performance, with an area under the curve of 0.83 for the training set and 0.78 for the testing set. Key complications like sepsis and SSIs significantly impacted hospital charges and LOS. For example, a 57‐year‐old patient with diabetes and sepsis had a 100% probability of being in the top 25% for both total charges and LOS.ConclusionPostoperative complications in TKA patients significantly increase hospital charges and LOS. The neural network model effectively predicted high‐risk patients after specific complications occurred, offering a potential tool for improving patient management and resource allocation.Levels of EvidenceLevel III.
PurposeThe purpose of this study was to predict high‐risk patients who experience significant increases in hospital charges and length of stay (LOS) following specific postoperative complications.MethodsThis study analyzed over two million patients from the Nationwide Inpatient Sample database undergoing elective total knee arthroplasty (TKA) for primary osteoarthritis. Baseline demographics, clinical characteristics and incidence of postoperative complications were examined. A neural network model was utilized to predict high‐risk patients who fall into the top 25% for both LOS and total hospital charges after complications such as sepsis or surgical site infection (SSI).ResultsThe most common complications were blood loss anaemia (14.6%), acute kidney injury (1.6%) and urinary tract infection (0.9%). Patients with complications incurred significantly higher total charges (mean $66,804) and longer LOS (mean 2.9 days) compared to those without complications (mean $58,545 and 2.1 days, respectively). The neural network model demonstrated strong predictive performance, with an area under the curve of 0.83 for the training set and 0.78 for the testing set. Key complications like sepsis and SSIs significantly impacted hospital charges and LOS. For example, a 57‐year‐old patient with diabetes and sepsis had a 100% probability of being in the top 25% for both total charges and LOS.ConclusionPostoperative complications in TKA patients significantly increase hospital charges and LOS. The neural network model effectively predicted high‐risk patients after specific complications occurred, offering a potential tool for improving patient management and resource allocation.Levels of EvidenceLevel III.
Sheth et al. reported that pretreatment with abaloparatide can increase bone mineral density in regions of the proximal femur that are in contact with the femoral stem of an implant in postmenopausal women with osteoporosis. An interesting finding reported is that the Gruen zones most affected by stress-shielding-induced bone loss following total hip arthroplasty were positively affected by the pretreatment, along with other proximal regions of the femur. What was not explored in this study is whether this increase in bone mineral density in the proximal femur was sufficient to affect the biomechanical properties of the bone, specifically the magnitude of stress-shielding-induced bone loss. The application of bone-adaptive modeling would be an interesting next step to address this, and it could involve the application of artificial intelligence (AI).AI has been used in medicine in various ways since the 1950s, from machine learning and chatbots that aimed to mimic human conversation to the 2020s when AI was trained to diagnose benign polyps and malignant polyps found in colonoscopies 1 . Overall, the application of AI has been slow in medicine compared with other fields, but it has been particularly slower in orthopaedics. A brief PubMed search using the key terms of "artificial intelligence in orthopaedics" yielded only 3,890 articles from 1976 to 2024. This result is much smaller than in other fields such as radiology (23,858 articles) or cancer (39,315 articles) during the same period. With the potential of AI continuously evolving, application in the field remains a moving target and can lead to confusion for researchers and clinicians.However, in a recent review 2 , 3 essential "domains" for the use of AI in personalizing orthopaedic care and improving outcomes were highlighted: (1) personalized prediction of clinical outcomes and adverse events, (2) automated diagnostic imaging analyses, and (3) forecasting resource utilization. The first 2 domains directly apply to the article by Sheth et al. and would contribute to understanding bone-adaptive modeling and the biomechanical properties associated with total hip arthroplasty. The third domain, forecasting resource utilization, is downstream of their article, but is still pertinent to the discussion of using AI in orthopaedics.The prediction of clinical outcomes and adverse events is difficult and continues to be a challenge. Machine learning has been used to predict bone mineral density from genomic data 3 or unplanned readmissions following total knee arthroplasty 4 . Another article used intraoperative load sensors and AI to improve accuracy and precision of force measurements during the balancing of total knee arthroplasty 5 . These few examples show a diverse application of predictive AI that, with improvements to the algorithms, sensors, and programs, can provide a sophisticated application to many areas of orthopaedic care.Perhaps more commonly regarded is the use of AI in analysis of diagnostic imaging, which is currently used to review 2dimensional i...
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